loading page

Application and comparative study of SWAT and LSTNet models on runoff simulation in the Atsuma River basin
  • +7
  • Yuechao Chen,
  • Yue Zhang,
  • Qing Zhang,
  • Xue Song,
  • Jiajia Gao,
  • Jiazhong Qian,
  • Yi Jin,
  • Zhaohui Bin,
  • Xiaolei Fan,
  • Zhen Guo
Yuechao Chen
Henan Polytechnic University

Corresponding Author:[email protected]

Author Profile
Yue Zhang
Muroran Institute of Technology
Author Profile
Qing Zhang
Henan Polytechnic University
Author Profile
Xue Song
Muroran Institute of Technology
Author Profile
Jiajia Gao
Henan Polytechnic University
Author Profile
Jiazhong Qian
Hefei University of Technology
Author Profile
Yi Jin
Henan Polytechnic University
Author Profile
Zhaohui Bin
Henan Institute of Geological Sciences
Author Profile
Xiaolei Fan
Henan Institute of Geological Survey
Author Profile
Zhen Guo
Henan Institute of Geological Survey
Author Profile

Abstract

Accurate runoff simulation is of great importance to understand watershed hydrologic cycle process, effective utilize water resources and respond flood disaster. Hydrologic model is one of the main tools for runoff simulation research and the continuous improvement in Machine Learning offers powerful tools for modeling of hydrologic process. This research took the runoff process of the Atsuma River basin in Hokkaido from 2015 to 2019 as object, proposed a special machine learning framework: Long-and Short-term Time-series Network (LSTNet) for runoff simulation, discussed the accuracy for runoff simulation of LSTNet model with (multivariate LSTNet Model) or without (univariate LSTNet Model) meteorological factors and Soil and Water Assessment Tool (SWAT) model respectively, analyzed the model selection for runoff simulation under different data conditions in the basin. The Nash-Sutcliffe efficiency coefficients (NSE) of the runoff simulation results in the validation (test) period were 0.633 (SWAT model), 0.643 (multivariate LSTNet model), and 0.716 (univariate LSTNet model) respectively. The results show that the accuracies of the two models for runoff simulation in the Atsuma River basin are all very high. SWAT model has prominent advantages in runoff simulation and shortcomings. LSTNet model shows great advantages and potential in runoff simulation. In summary, when target basin’ s data is accurate and complete, the accuracy of SWAT model in runoff simulation is high and stable. When the target basin lacks data or the quality of data is poor, LSTNet model can realize high-precision runoff simulation only based on the measured runoff data, which has a strong application.